PolSAR image classification with small sample learning based on CNN and CRF

Shuai-qi Zhang, Q. Yin, Jun Ni, Fan Zhang
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引用次数: 2

Abstract

Convolutional neural networks (CNN) have achieved great success in the optical image processing field. Hence, methods based on CNN are introduced into PolSAR image classification. Usually CNN needs a lot of training samples, but the cost of collecting ground truth data and making labels is very high. Our goal is to increase training samples by repeating learning processes with small sample learning technique. The proposed method used in this study is CNN and conditional random fields(CRF), which combines the structured modeling ability of CRF and the feature extraction advantage of CNN. On base of CNN and CRF, the framework of small sample learning is developed. The experimental data are two AIRSAR datasets. The paper will analyze the appropriate ratio of samples for small sample learning in the whole dataset. The results show that for these two data sets, when the ratio is 0.5%, small sample learning can achieve very high classification accuracy. It is similar to the accuracy of other methods which need at least 3% samples for training.
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基于CNN和CRF的小样本学习PolSAR图像分类
卷积神经网络(CNN)在光学图像处理领域取得了巨大的成功。因此,将基于CNN的方法引入到PolSAR图像分类中。通常CNN需要大量的训练样本,但是收集地面真值数据和制作标签的成本非常高。我们的目标是通过使用小样本学习技术重复学习过程来增加训练样本。本文提出的方法是CNN和条件随机场(conditional random field, CRF),结合了CRF的结构化建模能力和CNN的特征提取优势。在CNN和CRF的基础上,提出了小样本学习框架。实验数据为两个AIRSAR数据集。本文将分析整个数据集中适合小样本学习的样本比例。结果表明,对于这两个数据集,当比例为0.5%时,小样本学习可以获得非常高的分类准确率。这与其他至少需要3%样本进行训练的方法的准确率相似。
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